Abstract

ObjectiveEmergency department (ED) return visits within 72 h may be a sign of poor quality of care and entail unnecessary use of healthcare resources. In this study, we compare the performance of two leading statistical and machine learning classification algorithms, and we use the best performing approach to identify novel risk factors of ED return visits.MethodsWe analyzed 3.2 million ED encounters with at least one diagnosis under “injury, poisoning and certain other consequences of external causes” and “external causes of morbidity.” These encounters included patients 18 years or older from across 128 emergency room facilities in the USA. For each encounter, we calculated the 72-h ED return status and retrieved 57 features from demographics, diagnoses, procedures, and medications administered during the process of administration of medical care. We implemented a mixed-effects model to assess the effects of the covariates while accounting for the hierarchical structure of the data. Additionally, we investigated the predictive accuracy of the extreme gradient boosting tree ensemble approach and compared the performance of the two methods.ResultsThe mixed-effects model indicates that certain blunt force and non-blunt trauma inflates the risk of a return visit. Notably, patients with trauma to the head and patients with burns and corrosions have elevated risks. This is in addition to 11 other classes of both blunt force and non-blunt force traumas. In addition, prior healthcare resource utilization, patients who have had one or more prior return visits within the last 6 months, prior ED visits, and the number of hospitalizations within the 6 months are associated with increased risk of returning to the ED after discharge. On the one hand, the area under the receiver characteristic curve (AUROC) of the mixed-effects model was 0.710 (0.707, 0.712). On the other hand, the gradient boosting tree ensemble had a lower AUROC of 0.698 CI (0.696, 0.700) on the independent test model.ConclusionsThe proposed mixed-effects model achieved the highest known AUC and resulted in the identification of novel risk factors. The model outperformed one of the leading machine learning ensemble classifiers, the extreme gradient boosting tree in terms of model performance. The risk factors we identified can assist emergency departments to decrease the number of unplanned return visits within 72 h.

Highlights

  • Emergency departments across the USA are continually working on improving the quality of care as measured by health outcomes of patients, overall patient experience, and reduction in cost to both patients and facilities

  • The risk factors we identified can assist emergency departments to decrease the number of unplanned return visits within 72 h

  • We explored new variables in search of novel risk factors associated with emergency department (ED) returns for patients with trauma-related codes as captured by the International Classification of Diseases, Tenth Revision (ICD-10-CM) codes of S00-T79 and V00-Y99

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Summary

Methods

This study was approved by CHOC Children’s Hospital Institutional Review Board (IRB 180857). The descriptive and predictive multicenter models developed in this study were built using a subset of data from the database based on a priori inclusion criteria. We included EDs that contributed to the key database tables for the study (encounters, diagnoses, and medications tables) and have seen a large number of patients (set a priori at 10,000). These inclusion criteria ensured both the exclusion of potentially noisy data and the inclusion of large sample centers. We conducted variable selection on the random intercept model using stepwise minimization of the Akaike Information Criteria and grid search for hyperparameter tuning on the gradient boosting algorithm. Analyses were carried out using Apache Spark [32, 33], the R Statistical Computing Programming Language [34], and Python [35]

Results
Conclusions
Introduction
Surgical procedures
Limitations
Funding None

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